# Formula for “Relative absolute error” and “Root relative squared error” used in machine learning (as computed by Weka)

In open source data mining software Weka (written in Java), when I run some data mining algorithm like Linear regression Weka returns model and some model evaluating metrics for test data.

It looks like this:

``````Correlation coefficient                  0.2978
Mean absolute error                     15.5995
Root mean squared error                 29.9002
Relative absolute error                 47.7508 %
Root relative squared error             72.2651 %
``````

What is the formula for "Relative absolute error" and "Root relative squared error"? I cannot figure that out. I would like to use this metrics to evaluate my own algorithms in Matlab.

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From this presentation, in slide 22, and citing witten, here are the formulas:

Relative absolute error

Root relative squared error

with

• Actual target values: a1 a2 … an
• Predicted target values: p1 p2 … pn
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it works the same way as in Weka. Thanks you for help :) –  drasto May 27 '12 at 20:26
Hi, I did a mistake in the order of importation of formula, now it is in the good order. You're welcome. –  Christopher Chiche May 27 '12 at 21:10